{
 "cells": [
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## Analyze Kaggle Dataset"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 39,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "hello there\n"
     ]
    }
   ],
   "source": [
    "print(\"hello there\")"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 40,
   "metadata": {},
   "outputs": [],
   "source": [
    "import pandas as pd\n",
    "import os\n",
    "import numpy as np\n",
    "from sklearn.model_selection import train_test_split\n",
    "import matplotlib.pyplot as plt\n",
    "import cv2\n",
    "import random\n",
    "from PIL import Image\n",
    "from xml.dom import minidom\n",
    "import csv\n",
    "from IPython.display import Image"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 41,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\metadata.csv\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\test\\test\\army.jpg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\test\\test\\giphy.gif\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\test\\test\\mafia-mafia-game.gif\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\test\\test\\terrorists.jpg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\test\\test\\terrorists2.jpg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\test\\test\\weapons.jpg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\test\\test\\weapons2.jpg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\test\\test\\weaponsgta5.gif\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_10.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_100.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_11.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_12.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_14.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_15.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_16.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_17.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_18.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_20.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_21.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_22.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_23.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_24.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_25.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_26.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_27.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_29.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_3.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_32.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_33.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_34.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_37.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_38.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_39.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_4.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_44.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_45.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_46.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_47.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_48.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_49.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_5.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_51.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_52.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_53.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_55.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_56.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_57.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_6.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_61.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_63.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_64.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_65.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_66.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_67.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_68.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_69.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_7.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_71.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_72.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_74.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_75.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_78.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_79.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_80.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_85.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_93.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Automatic Rifle_99.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_10.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_100.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_11.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_12.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_13.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_14.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_15.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_17.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_19.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_20.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_21.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_24.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_26.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_3.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_30.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_32.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_33.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_34.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_39.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_4.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_40.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_42.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_43.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_45.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_49.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_5.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_50.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_51.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_53.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_55.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_57.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_58.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_6.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_60.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_61.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_66.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_67.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_68.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_69.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_7.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_73.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_75.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_77.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_79.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_8.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_80.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_81.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_83.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_84.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_85.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_87.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_96.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_98.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Bazooka_99.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_10.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_11.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_12.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_15.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_16.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_17.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_18.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_23.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_24.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_27.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_28.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_29.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_3.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_30.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_32.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_33.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_36.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_37.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_38.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_39.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_40.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_41.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_44.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_45.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_46.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_48.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_49.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_5.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_50.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_51.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_52.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_56.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_57.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_58.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_59.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_6.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_60.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_61.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_63.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_64.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_65.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_66.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_67.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_68.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_7.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_70.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_71.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_72.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_73.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_74.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_76.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_79.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_8.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_80.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_81.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_82.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_84.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_85.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_86.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_87.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_88.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_89.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_9.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_90.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_92.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_94.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_95.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_96.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_97.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Grenade Launcher_98.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_10.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_11.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_12.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_15.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_16.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_17.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_18.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_20.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_21.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_23.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_24.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_25.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_26.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_28.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_29.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_3.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_30.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_33.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_34.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_35.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_37.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_38.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_39.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_4.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_40.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_41.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_43.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_45.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_46.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_58.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_6.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_60.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_61.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_67.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_7.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_71.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_77.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_78.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_8.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_80.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_82.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_83.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_84.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_85.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_86.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_87.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_88.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_89.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_9.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_90.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_91.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_93.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_94.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_96.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_97.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Handgun_98.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_10.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_12.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_13.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_14.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_15.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_16.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_20.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_23.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_25.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_26.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_27.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_28.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_3.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_30.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_31.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_33.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_34.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_35.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_39.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_4.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_40.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_41.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_42.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_44.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_45.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_46.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_47.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_48.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_49.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_5.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_51.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_52.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_56.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_57.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_58.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_59.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_6.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_61.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_65.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_67.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_68.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_69.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_7.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_70.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_71.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_72.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_73.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_74.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_77.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_78.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_8.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_83.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_84.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_85.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_88.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_89.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_9.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Knife_95.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_10.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_100.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_11.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_12.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_13.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_14.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_17.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_18.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_21.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_22.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_23.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_25.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_27.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_28.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_29.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_3.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_31.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_32.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_36.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_37.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_39.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_4.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_41.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_42.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_47.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_48.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_49.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_5.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_50.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_51.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_52.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_54.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_55.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_56.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_58.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_6.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_60.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_65.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_66.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_68.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_69.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_7.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_70.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_72.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_74.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_76.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_77.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_78.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_79.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_80.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_81.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_82.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_84.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_85.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_86.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_89.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_90.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_91.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_92.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_94.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_96.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Shotgun_98.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_10.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_100.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_12.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_13.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_14.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_15.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_17.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_18.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_20.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_21.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_23.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_24.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_25.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_26.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_27.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_28.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_29.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_3.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_30.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_32.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_34.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_35.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_36.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_37.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_39.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_4.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_40.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_41.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_43.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_44.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_45.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_46.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_48.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_49.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_5.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_50.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_51.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_52.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_54.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_57.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_58.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_59.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_6.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_60.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_64.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_65.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_66.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_67.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_68.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_7.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_70.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_73.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_75.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_76.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_77.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_78.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_79.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_8.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_82.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_84.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_87.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_88.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_89.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_91.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_92.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_93.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_94.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_96.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_97.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\SMG_99.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_10.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_100.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_16.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_17.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_19.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_20.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_21.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_23.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_24.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_25.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_26.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_27.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_28.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_29.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_30.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_31.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_32.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_33.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_35.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_37.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_38.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_39.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_4.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_40.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_42.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_44.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_45.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_46.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_47.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_48.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_49.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_5.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_52.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_53.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_54.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_55.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_59.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_61.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_62.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_63.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_64.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_65.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_66.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_67.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_68.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_69.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_7.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_70.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_73.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_74.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_76.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_77.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_79.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_8.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_80.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_81.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_82.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_83.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_84.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_85.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_86.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_87.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_88.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_9.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_90.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_91.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_92.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_93.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_96.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_97.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sniper_99.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_10.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_100.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_11.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_13.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_14.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_15.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_17.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_18.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_19.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_20.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_22.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_23.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_24.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_25.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_26.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_27.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_28.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_29.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_3.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_30.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_31.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_32.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_33.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_35.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_36.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_37.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_38.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_39.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_40.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_41.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_42.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_43.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_44.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_45.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_46.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_48.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_5.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_51.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_53.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_54.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_55.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_56.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_58.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_6.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_60.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_62.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_63.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_64.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_65.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_66.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_68.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_69.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_74.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_75.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_76.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_78.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_79.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_8.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_80.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_82.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_85.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_87.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_88.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_90.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_91.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_92.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_93.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_94.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_95.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_97.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\images\\Sword_98.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_10.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_100.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_11.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_12.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_14.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_15.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_16.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_17.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_18.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_20.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_21.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_22.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_23.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_24.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_25.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_26.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_27.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_29.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_3.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_32.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_33.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_34.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_37.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_38.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_39.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_4.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_44.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_45.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_46.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_47.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_48.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_49.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_5.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_51.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_52.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_53.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_55.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_56.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_57.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_6.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_61.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_63.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_64.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_65.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_66.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_67.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_68.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_69.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_7.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_71.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_72.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_74.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_75.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_78.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_79.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_80.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_85.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_93.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Automatic Rifle_99.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_10.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_100.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_11.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_12.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_13.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_14.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_15.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_17.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_19.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_20.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_21.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_24.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_26.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_3.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_30.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_32.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_33.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_34.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_39.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_4.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_40.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_42.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_43.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_45.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_49.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_5.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_50.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_51.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_53.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_55.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_57.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_58.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_6.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_60.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_61.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_66.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_67.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_68.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_69.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_7.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_73.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_75.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_77.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_79.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_8.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_80.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_81.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_83.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_84.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_85.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_87.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_96.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_98.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Bazooka_99.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_10.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_11.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_12.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_15.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_16.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_17.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_18.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_23.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_24.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_27.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_28.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_29.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_3.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_30.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_32.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_33.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_36.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_37.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_38.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_39.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_40.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_41.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_44.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_45.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_46.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_48.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_49.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_5.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_50.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_51.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_52.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_56.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_57.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_58.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_59.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_6.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_60.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_61.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_63.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_64.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_65.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_66.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_67.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_68.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_7.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_70.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_71.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_72.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_73.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_74.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_76.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_79.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_8.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_80.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_81.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_82.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_84.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_85.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_86.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_87.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_88.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_89.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_9.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_90.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_92.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_94.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_95.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_96.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_97.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Grenade Launcher_98.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_10.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_11.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_12.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_15.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_16.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_17.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_18.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_20.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_21.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_23.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_24.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_25.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_26.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_28.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_29.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_3.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_30.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_33.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_34.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_35.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_37.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_38.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_39.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_4.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_40.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_41.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_43.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_45.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_46.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_58.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_6.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_60.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_61.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_67.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_7.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_71.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_77.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_78.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_8.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_80.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_82.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_83.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_84.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_85.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_86.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_87.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_88.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_89.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_9.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_90.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_91.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_93.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_94.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_96.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_97.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Handgun_98.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_10.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_12.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_13.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_14.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_15.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_16.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_20.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_23.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_25.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_26.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_27.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_28.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_3.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_30.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_31.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_33.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_34.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_35.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_39.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_4.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_40.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_41.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_42.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_44.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_45.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_46.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_47.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_48.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_49.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_5.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_51.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_52.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_56.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_57.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_58.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_59.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_6.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_61.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_65.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_67.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_68.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_69.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_7.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_70.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_71.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_72.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_73.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_74.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_77.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_78.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_8.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_83.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_84.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_85.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_88.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_89.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_9.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Knife_95.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_10.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_100.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_11.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_12.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_13.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_14.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_17.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_18.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_21.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_22.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_23.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_25.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_27.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_28.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_29.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_3.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_31.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_32.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_36.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_37.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_39.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_4.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_41.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_42.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_47.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_48.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_49.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_5.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_50.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_51.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_52.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_54.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_55.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_56.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_58.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_6.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_60.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_65.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_66.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_68.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_69.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_7.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_70.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_72.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_74.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_76.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_77.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_78.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_79.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_80.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_81.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_82.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_84.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_85.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_86.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_89.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_90.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_91.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_92.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_94.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_96.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Shotgun_98.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_10.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_100.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_12.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_13.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_14.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_15.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_17.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_18.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_20.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_21.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_23.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_24.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_25.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_26.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_27.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_28.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_29.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_3.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_30.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_32.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_34.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_35.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_36.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_37.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_39.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_4.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_40.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_41.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_43.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_44.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_45.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_46.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_48.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_49.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_5.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_50.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_51.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_52.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_54.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_57.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_58.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_59.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_6.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_60.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_64.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_65.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_66.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_67.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_68.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_7.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_70.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_73.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_75.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_76.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_77.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_78.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_79.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_8.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_82.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_84.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_87.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_88.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_89.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_91.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_92.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_93.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_94.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_96.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_97.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\SMG_99.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_10.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_100.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_16.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_17.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_19.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_20.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_21.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_23.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_24.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_25.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_26.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_27.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_28.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_29.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_30.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_31.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_32.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_33.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_35.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_37.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_38.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_39.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_4.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_40.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_42.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_44.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_45.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_46.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_47.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_48.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_49.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_5.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_52.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_53.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_54.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_55.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_59.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_61.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_62.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_63.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_64.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_65.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_66.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_67.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_68.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_69.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_7.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_70.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_73.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_74.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_76.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_77.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_79.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_8.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_80.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_81.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_82.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_83.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_84.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_85.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_86.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_87.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_88.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_9.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_90.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_91.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_92.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_93.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_96.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_97.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sniper_99.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_10.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_100.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_11.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_13.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_14.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_15.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_17.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_18.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_19.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_20.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_22.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_23.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_24.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_25.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_26.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_27.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_28.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_29.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_3.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_30.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_31.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_32.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_33.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_35.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_36.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_37.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_38.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_39.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_40.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_41.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_42.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_43.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_44.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_45.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_46.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_48.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_5.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_51.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_53.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_54.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_55.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_56.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_58.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_6.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_60.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_62.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_63.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_64.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_65.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_66.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_68.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_69.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_74.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_75.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_76.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_78.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_79.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_8.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_80.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_82.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_85.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_87.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_88.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_90.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_91.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_92.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_93.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_94.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_95.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_97.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\train\\labels\\Sword_98.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Automatic Rifle_13.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Automatic Rifle_19.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Automatic Rifle_28.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Automatic Rifle_35.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Automatic Rifle_40.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Automatic Rifle_41.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Automatic Rifle_42.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Automatic Rifle_43.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Automatic Rifle_50.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Automatic Rifle_54.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Automatic Rifle_62.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Automatic Rifle_70.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Automatic Rifle_77.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Automatic Rifle_81.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Automatic Rifle_9.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Bazooka_18.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Bazooka_37.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Bazooka_44.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Bazooka_47.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Bazooka_59.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Bazooka_70.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Bazooka_71.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Bazooka_72.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Bazooka_74.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Bazooka_76.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Bazooka_78.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Bazooka_82.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Bazooka_86.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Grenade Launcher_100.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Grenade Launcher_13.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Grenade Launcher_20.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Grenade Launcher_21.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Grenade Launcher_22.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Grenade Launcher_25.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Grenade Launcher_26.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Grenade Launcher_34.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Grenade Launcher_35.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Grenade Launcher_4.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Grenade Launcher_42.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Grenade Launcher_47.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Grenade Launcher_62.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Grenade Launcher_75.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Grenade Launcher_78.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Grenade Launcher_83.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Grenade Launcher_93.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Grenade Launcher_99.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Handgun_13.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Handgun_14.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Handgun_19.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Handgun_22.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Handgun_27.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Handgun_31.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Handgun_32.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Handgun_36.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Handgun_44.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Handgun_5.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Handgun_76.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Handgun_81.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Handgun_92.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Handgun_99.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Knife_11.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Knife_18.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Knife_19.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Knife_24.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Knife_36.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Knife_38.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Knife_53.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Knife_60.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Knife_66.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Knife_75.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Knife_76.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Knife_90.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Knife_92.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Knife_93.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Shotgun_15.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Shotgun_16.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Shotgun_33.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Shotgun_35.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Shotgun_43.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Shotgun_44.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Shotgun_46.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Shotgun_53.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Shotgun_57.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Shotgun_59.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Shotgun_64.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Shotgun_67.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Shotgun_73.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Shotgun_87.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Shotgun_9.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Shotgun_93.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\SMG_11.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\SMG_16.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\SMG_19.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\SMG_22.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\SMG_31.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\SMG_33.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\SMG_38.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\SMG_53.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\SMG_55.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\SMG_56.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\SMG_80.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\SMG_81.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\SMG_83.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\SMG_86.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\SMG_9.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\SMG_90.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\SMG_95.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sniper_11.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sniper_12.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sniper_13.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sniper_14.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sniper_15.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sniper_18.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sniper_22.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sniper_3.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sniper_36.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sniper_50.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sniper_6.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sniper_60.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sniper_72.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sniper_75.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sniper_78.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sniper_89.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sniper_95.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sniper_98.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sword_12.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sword_16.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sword_21.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sword_34.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sword_4.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sword_50.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sword_59.png\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sword_67.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sword_7.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sword_77.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sword_81.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sword_83.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sword_84.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sword_86.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sword_89.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sword_9.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sword_96.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\images\\Sword_99.jpeg\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Automatic Rifle_13.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Automatic Rifle_19.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Automatic Rifle_28.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Automatic Rifle_35.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Automatic Rifle_40.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Automatic Rifle_41.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Automatic Rifle_42.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Automatic Rifle_43.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Automatic Rifle_50.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Automatic Rifle_54.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Automatic Rifle_62.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Automatic Rifle_70.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Automatic Rifle_77.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Automatic Rifle_81.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Automatic Rifle_9.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Bazooka_18.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Bazooka_37.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Bazooka_44.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Bazooka_47.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Bazooka_59.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Bazooka_70.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Bazooka_71.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Bazooka_72.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Bazooka_74.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Bazooka_76.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Bazooka_78.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Bazooka_82.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Bazooka_86.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Grenade Launcher_100.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Grenade Launcher_13.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Grenade Launcher_20.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Grenade Launcher_21.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Grenade Launcher_22.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Grenade Launcher_25.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Grenade Launcher_26.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Grenade Launcher_34.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Grenade Launcher_35.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Grenade Launcher_4.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Grenade Launcher_42.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Grenade Launcher_47.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Grenade Launcher_62.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Grenade Launcher_75.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Grenade Launcher_78.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Grenade Launcher_83.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Grenade Launcher_93.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Grenade Launcher_99.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Handgun_13.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Handgun_14.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Handgun_19.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Handgun_22.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Handgun_27.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Handgun_31.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Handgun_32.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Handgun_36.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Handgun_44.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Handgun_5.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Handgun_76.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Handgun_81.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Handgun_92.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Handgun_99.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Knife_11.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Knife_18.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Knife_19.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Knife_24.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Knife_36.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Knife_38.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Knife_53.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Knife_60.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Knife_66.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Knife_75.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Knife_76.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Knife_90.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Knife_92.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Knife_93.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Shotgun_15.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Shotgun_16.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Shotgun_33.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Shotgun_35.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Shotgun_43.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Shotgun_44.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Shotgun_46.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Shotgun_53.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Shotgun_57.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Shotgun_59.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Shotgun_64.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Shotgun_67.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Shotgun_73.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Shotgun_87.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Shotgun_9.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Shotgun_93.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\SMG_11.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\SMG_16.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\SMG_19.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\SMG_22.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\SMG_31.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\SMG_33.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\SMG_38.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\SMG_53.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\SMG_55.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\SMG_56.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\SMG_80.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\SMG_81.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\SMG_83.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\SMG_86.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\SMG_9.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\SMG_90.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\SMG_95.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sniper_11.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sniper_12.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sniper_13.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sniper_14.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sniper_15.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sniper_18.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sniper_22.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sniper_3.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sniper_36.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sniper_50.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sniper_6.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sniper_60.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sniper_72.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sniper_75.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sniper_78.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sniper_89.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sniper_95.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sniper_98.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sword_12.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sword_16.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sword_21.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sword_34.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sword_4.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sword_50.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sword_59.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sword_67.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sword_7.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sword_77.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sword_81.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sword_83.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sword_84.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sword_86.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sword_89.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sword_9.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sword_96.txt\n",
      "D:\\ARSALAN\\datasets\\kaggle_weapon\\weapon_detection\\val\\labels\\Sword_99.txt\n"
     ]
    }
   ],
   "source": [
    "for dirname, _, filenames in os.walk(\"D:\\ARSALAN\\datasets\\kaggle_weapon\"):\n",
    "    for filename in filenames:\n",
    "        print(os.path.join(dirname, filename))"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 42,
   "metadata": {},
   "outputs": [],
   "source": [
    "file = \"D:\\ARSALAN\\datasets\\kaggle_weapon\\metadata.csv\"\n",
    "data = pd.read_csv(file)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 43,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/html": [
       "<div>\n",
       "<style scoped>\n",
       "    .dataframe tbody tr th:only-of-type {\n",
       "        vertical-align: middle;\n",
       "    }\n",
       "\n",
       "    .dataframe tbody tr th {\n",
       "        vertical-align: top;\n",
       "    }\n",
       "\n",
       "    .dataframe thead th {\n",
       "        text-align: right;\n",
       "    }\n",
       "</style>\n",
       "<table border=\"1\" class=\"dataframe\">\n",
       "  <thead>\n",
       "    <tr style=\"text-align: right;\">\n",
       "      <th></th>\n",
       "      <th>imagefile</th>\n",
       "      <th>labelfile</th>\n",
       "      <th>target</th>\n",
       "      <th>train_id</th>\n",
       "    </tr>\n",
       "  </thead>\n",
       "  <tbody>\n",
       "    <tr>\n",
       "      <th>0</th>\n",
       "      <td>Automatic Rifle_10.jpeg</td>\n",
       "      <td>Automatic Rifle_10.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>1</th>\n",
       "      <td>Automatic Rifle_100.jpeg</td>\n",
       "      <td>Automatic Rifle_100.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>2</th>\n",
       "      <td>Automatic Rifle_11.jpeg</td>\n",
       "      <td>Automatic Rifle_11.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>3</th>\n",
       "      <td>Automatic Rifle_12.jpeg</td>\n",
       "      <td>Automatic Rifle_12.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>4</th>\n",
       "      <td>Automatic Rifle_13.jpeg</td>\n",
       "      <td>Automatic Rifle_13.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>5</th>\n",
       "      <td>Automatic Rifle_14.jpeg</td>\n",
       "      <td>Automatic Rifle_14.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>6</th>\n",
       "      <td>Automatic Rifle_15.png</td>\n",
       "      <td>Automatic Rifle_15.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>7</th>\n",
       "      <td>Automatic Rifle_16.png</td>\n",
       "      <td>Automatic Rifle_16.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>8</th>\n",
       "      <td>Automatic Rifle_17.jpeg</td>\n",
       "      <td>Automatic Rifle_17.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>9</th>\n",
       "      <td>Automatic Rifle_18.png</td>\n",
       "      <td>Automatic Rifle_18.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>10</th>\n",
       "      <td>Automatic Rifle_19.jpeg</td>\n",
       "      <td>Automatic Rifle_19.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>11</th>\n",
       "      <td>Automatic Rifle_20.jpeg</td>\n",
       "      <td>Automatic Rifle_20.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>12</th>\n",
       "      <td>Automatic Rifle_21.jpeg</td>\n",
       "      <td>Automatic Rifle_21.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>13</th>\n",
       "      <td>Automatic Rifle_22.jpeg</td>\n",
       "      <td>Automatic Rifle_22.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>14</th>\n",
       "      <td>Automatic Rifle_23.jpeg</td>\n",
       "      <td>Automatic Rifle_23.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>15</th>\n",
       "      <td>Automatic Rifle_24.jpeg</td>\n",
       "      <td>Automatic Rifle_24.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>16</th>\n",
       "      <td>Automatic Rifle_25.jpeg</td>\n",
       "      <td>Automatic Rifle_25.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>17</th>\n",
       "      <td>Automatic Rifle_26.jpeg</td>\n",
       "      <td>Automatic Rifle_26.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>18</th>\n",
       "      <td>Automatic Rifle_27.jpeg</td>\n",
       "      <td>Automatic Rifle_27.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>19</th>\n",
       "      <td>Automatic Rifle_28.png</td>\n",
       "      <td>Automatic Rifle_28.txt</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "    </tr>\n",
       "  </tbody>\n",
       "</table>\n",
       "</div>"
      ],
      "text/plain": [
       "                   imagefile                labelfile  target  train_id\n",
       "0    Automatic Rifle_10.jpeg   Automatic Rifle_10.txt       0         1\n",
       "1   Automatic Rifle_100.jpeg  Automatic Rifle_100.txt       0         1\n",
       "2    Automatic Rifle_11.jpeg   Automatic Rifle_11.txt       0         1\n",
       "3    Automatic Rifle_12.jpeg   Automatic Rifle_12.txt       0         1\n",
       "4    Automatic Rifle_13.jpeg   Automatic Rifle_13.txt       0         0\n",
       "5    Automatic Rifle_14.jpeg   Automatic Rifle_14.txt       0         1\n",
       "6     Automatic Rifle_15.png   Automatic Rifle_15.txt       0         1\n",
       "7     Automatic Rifle_16.png   Automatic Rifle_16.txt       0         1\n",
       "8    Automatic Rifle_17.jpeg   Automatic Rifle_17.txt       0         1\n",
       "9     Automatic Rifle_18.png   Automatic Rifle_18.txt       0         1\n",
       "10   Automatic Rifle_19.jpeg   Automatic Rifle_19.txt       0         0\n",
       "11   Automatic Rifle_20.jpeg   Automatic Rifle_20.txt       0         1\n",
       "12   Automatic Rifle_21.jpeg   Automatic Rifle_21.txt       0         1\n",
       "13   Automatic Rifle_22.jpeg   Automatic Rifle_22.txt       0         1\n",
       "14   Automatic Rifle_23.jpeg   Automatic Rifle_23.txt       0         1\n",
       "15   Automatic Rifle_24.jpeg   Automatic Rifle_24.txt       0         1\n",
       "16   Automatic Rifle_25.jpeg   Automatic Rifle_25.txt       0         1\n",
       "17   Automatic Rifle_26.jpeg   Automatic Rifle_26.txt       0         1\n",
       "18   Automatic Rifle_27.jpeg   Automatic Rifle_27.txt       0         1\n",
       "19    Automatic Rifle_28.png   Automatic Rifle_28.txt       0         0"
      ]
     },
     "execution_count": 43,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "data.head(20)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 44,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "<matplotlib.image.AxesImage at 0x174989119d0>"
      ]
     },
     "execution_count": 44,
     "metadata": {},
     "output_type": "execute_result"
    },
    {
     "data": {
      "image/png": "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",
      "text/plain": [
       "<Figure size 640x480 with 1 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "#print plor a sample image\n",
    "image = cv2.imread('D:\\ARSALAN\\j_ws\\Automatic Rifle_9.jpeg')\n",
    "plt.imshow(image)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 48,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "(array([0, 1, 2, 3, 4, 5, 6, 7, 8], dtype=int64), 9)"
      ]
     },
     "execution_count": 48,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "# Display the unique classes and their count using the 'target' column\n",
    "unique_classes = data['target'].unique()\n",
    "num_classes = len(unique_classes)\n",
    "\n",
    "unique_classes, num_classes"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": [
    "# Classes 9 classes\n",
    "\n",
    "# Automatic Rifle\n",
    "# Bazooka\n",
    "# Grenade Launcher\n",
    "# Handgun\n",
    "# Knife\n",
    "# Shotgun\n",
    "# SMG\n",
    "# Sniper\n",
    "# Sword"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  }
 ],
 "metadata": {
  "kernelspec": {
   "display_name": "Python 3 (ipykernel)",
   "language": "python",
   "name": "python3"
  },
  "language_info": {
   "codemirror_mode": {
    "name": "ipython",
    "version": 3
   },
   "file_extension": ".py",
   "mimetype": "text/x-python",
   "name": "python",
   "nbconvert_exporter": "python",
   "pygments_lexer": "ipython3",
   "version": "3.8.0"
  }
 },
 "nbformat": 4,
 "nbformat_minor": 2
}
